基于深度学习的钢筋焊接缺陷检测

Yixuan Wang, Guodong Chen, Zhihong Wu, Mingwei Huang, Jinxun Lin
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引用次数: 0

摘要

焊接连接是现场钢筋工程中的重要工序,最后应由施工人员目视检查,确保接头质量符合规范要求。人工检查大多是费时费力的。深度学习的发展使得工业缺陷检测领域取得了巨大的进步。然而,在钢筋焊接缺陷的识别中,既要考虑精度又要考虑效率,这是一个难题。因此,在本研究中,提出了一种基于YOLOv3的缺陷检测器。在该网络中,我们将不同扩张速率的扩张卷积进行整合,以增加主干的感受野。利用CIoU损失加速了边界盒回归,提高了缺陷检测的精度。此外,焦损确实被用于解决类不平衡问题。在实际钢筋焊接数据集上进行了实验,与YOLOv3相比,mAP提高了6.83%。同时,所提出的探测器也满足了钢筋焊接缺陷检测任务的实时性要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Welding Defect Detection in Steel Reinforcing Bars using Deep Learning
Weld connection is an important process in on-site reinforcing bar engineering, which should finally be visually inspected by construction workers to ensure that the quality of the joint meets the code requirements. Manual inspection is mostly time-consuming and laborious. The development of deep learning has led to great advances in the field of industrial defect detection. However, there are some challenges to considering both accuracy and efficiency in the recognition of rebar welding defects. Hence, in this study, a defect detector has been proposed, based on YOLOv3. In the proposed network, we integrate the dilated convolution with different dilation rates to increase the receptive field of the backbone. Moreover, CIoU loss is utilized, which accelerates the bounding box regression and improves the accuracy of defect detection. Furthermore, Focal loss is indeed applied to solve the class imbalance problem. The experiments are run on a real-world rebar welding dataset that mAP improves by 6.83%, compared with YOLOv3. Meanwhile, the proposed detector also meets the real-time requirements of the rebar welding defect detection task.
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